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      Anomaly Detection in DevOps Toolchain

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          Abstract

          The tools employed in the DevOps Toolchain generates a large quantity of data that is typically ignored or inspected only in particular occasions, at most. However, the analysis of such data could enable the extraction of useful information about the status and evolution of the project. For example, metrics like the "lines of code added since the last release" or "failures detected in the staging environment" are good indicators for predicting potential risks in the incoming release. In order to prevent problems appearing in later stages of production, an anomaly detection system can operate in the staging environment to compare the current incoming release with previous ones according to predefined metrics. The analysis is conducted before going into production to identify anomalies which should be addressed by human operators that address false-positive and negatives that can appear. In this paper, we describe a prototypical implementation of the aforementioned idea in the form of a "proof of concept". The current study effectively demonstrates the feasibility of the approach for a set of implemented functionalities.

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          A Cambrian Explosion of DevOps Tools

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            Non-Intrusive Anomaly Detection With Streaming Performance Metrics and Logs for DevOps in Public Clouds: A Case Study in AWS

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              Fraud risk monitoring system for e-banking transactions

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                Author and article information

                Journal
                27 September 2019
                Article
                1909.12682
                7c6d99d3-c09f-4699-833c-fa8d1a44877a

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                cs.SE

                Software engineering
                Software engineering

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